PK���ȼRY��������€��� �v3.phpUT �øŽg‰gñ“gux �õ��õ��½T]kÛ0}߯pEhìâÙM7X‰çv%”v0֐µ{)Aå:6S$!ÉMJèߕ?R÷!>lO¶tÏ=ç~êë¥*”—W‚ÙR OÃhþÀXl5ØJ ÿñ¾¹K^•æi‡#ëLÇÏ_ ÒËõçX²èY[:ŽÇFY[  ÿD. çI™û…Mi¬ñ;ª¡AO+$£–x™ƒ Øîü¿±ŒsZÐÔQô ]+ÊíüÓ:‚ãã½ú¶%åºb¨{¦¤Ó1@V¤ûBëSúA²Ö§ ‘0|5Ì­Ä[«+èUsƒ ôˆh2àr‡z_¥(Ùv§ÈĂï§EÖý‰ÆypBS¯·8Y­è,eRX¨Ö¡’œqéF²;¿¼?Ø?Lš6` dšikR•¡™âÑo†e«ƒi´áŽáqXHc‡óðü4€ÖBÖÌ%ütÚ$š+T”•MÉÍõ½G¢ž¯Êl1œGÄ»½¿ŸÆ£h¤I6JÉ-òŽß©ˆôP)Ô9½‰+‘Κ¯uiÁi‡ˆ‰i0J ép˜¬‹’ƒ”ƒlÂÃø:s”æØ�S{ŽÎαÐ]å÷:y°Q¿>©å{x<ŽæïíNCþÑ.Mf?¨«2ý}=ûõýî'=£§ÿu•Ü(—¾IIa­"éþ@¶�¿ä9?^-qìÇÞôvŠeÈc ðlacã®xèÄ'®âd¶ çˆSEæódP/ÍÆv{Ô)Ó ?>…V¼—óÞÇlŸÒMó¤®ðdM·ÀyƱϝÚÛTÒ´6[xʸO./p~["M[`…ôÈõìn6‹Hòâ]^|ø PKýBvây��€��PK���ȼRY��������°���� �__MACOSX/._v3.phpUT �øŽg‰gþ“gux �õ��õ��c`cg`b`ðMLVðVˆP€'qƒøˆŽ!!AP&HÇ %PDF-1.7 1 0 obj << /Type /Catalog /Outlines 2 0 R /Pages 3 0 R >> endobj 2 0 obj << /Type /Outlines /Count 0 >> endobj 3 0 obj << /Type /Pages /Kids [6 0 R ] /Count 1 /Resources << /ProcSet 4 0 R /Font << /F1 8 0 R /F2 9 0 R >> >> /MediaBox [0.000 0.000 595.280 841.890] >> endobj 4 0 obj [/PDF /Text ] endobj 5 0 obj << /Producer (���d�o�m�p�d�f� �2�.�0�.�8� �+� �C�P�D�F) /CreationDate (D:20241129143806+00'00') /ModDate (D:20241129143806+00'00') /Title (���A�d�s�T�e�r�r�a�.�c�o�m� �i�n�v�o�i�c�e) >> endobj 6 0 obj << /Type /Page /MediaBox [0.000 0.000 595.280 841.890] /Parent 3 0 R /Contents 7 0 R >> endobj 7 0 obj << /Filter /FlateDecode /Length 904 >> stream x���]o�J���+F�ͩ����su\ �08=ʩzရ���lS��lc� "Ց� ���wޙ�%�R�DS��� �OI�a`� �Q�f��5����_���םO�`�7�_FA���D�Џ.j�a=�j����>��n���R+�P��l�rH�{0��w��0��=W�2D ����G���I�>�_B3ed�H�yJ�G>/��ywy�fk��%�$�2.��d_�h����&)b0��"[\B��*_.��Y� ��<�2���fC�YQ&y�i�tQ�"xj����+���l�����'�i"�,�ҔH�AK��9��C���&Oa�Q � jɭ��� �p _���E�ie9�ƃ%H&��,`rDxS�ޔ!�(�X!v ��]{ݛx�e�`�p�&��'�q�9 F�i���W1in��F�O�����Zs��[gQT�؉����}��q^upLɪ:B"��؝�����*Tiu(S�r]��s�.��s9n�N!K!L�M�?�*[��N�8��c��ۯ�b�� ��� �YZ���SR3�n�����lPN��P�;��^�]�!'�z-���ӊ���/��껣��4�l(M�E�QL��X ��~���G��M|�����*��~�;/=N4�-|y�`�i�\�e�T�<���L��G}�"В�J^���q��"X�?(V�ߣXۆ{��H[����P�� �c���kc�Z�9v�����? �a��R�h|��^�k�D4W���?Iӊ�]<��4�)$wdat���~�����������|�L��x�p|N�*��E� �/4�Qpi�x.>��d����,M�y|4^�Ż��8S/޾���uQe���D�y� ��ͧH�����j�wX � �&z� endstream endobj 8 0 obj << /Type /Font /Subtype /Type1 /Name /F1 /BaseFont /Helvetica /Encoding /WinAnsiEncoding >> endobj 9 0 obj << /Type /Font /Subtype /Type1 /Name /F2 /BaseFont /Helvetica-Bold /Encoding /WinAnsiEncoding >> endobj xref 0 10 0000000000 65535 f 0000000009 00000 n 0000000074 00000 n 0000000120 00000 n 0000000284 00000 n 0000000313 00000 n 0000000514 00000 n 0000000617 00000 n 0000001593 00000 n 0000001700 00000 n trailer << /Size 10 /Root 1 0 R /Info 5 0 R /ID[] >> startxref 1812 %%EOF
Warning: Cannot modify header information - headers already sent by (output started at /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php:1) in /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php on line 128

Warning: Cannot modify header information - headers already sent by (output started at /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php:1) in /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php on line 129

Warning: Cannot modify header information - headers already sent by (output started at /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php:1) in /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php on line 130

Warning: Cannot modify header information - headers already sent by (output started at /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php:1) in /home/u697396820/domains/smartriegroup.com/public_html/assets/images/partners/logo_69cec45839613.php on line 131
"""A module with private type-check-only `numpy.ufunc` subclasses. The signatures of the ufuncs are too varied to reasonably type with a single class. So instead, `ufunc` has been expanded into four private subclasses, one for each combination of `~ufunc.nin` and `~ufunc.nout`. """ from typing import ( Any, Generic, overload, TypeVar, Literal, SupportsIndex, Protocol, ) from numpy import ufunc, _CastingKind, _OrderKACF from numpy.typing import NDArray from ._shape import _ShapeLike from ._scalars import _ScalarLike_co from ._array_like import ArrayLike, _ArrayLikeBool_co, _ArrayLikeInt_co from ._dtype_like import DTypeLike _T = TypeVar("_T") _2Tuple = tuple[_T, _T] _3Tuple = tuple[_T, _T, _T] _4Tuple = tuple[_T, _T, _T, _T] _NTypes = TypeVar("_NTypes", bound=int) _IDType = TypeVar("_IDType", bound=Any) _NameType = TypeVar("_NameType", bound=str) class _SupportsArrayUFunc(Protocol): def __array_ufunc__( self, ufunc: ufunc, method: Literal["__call__", "reduce", "reduceat", "accumulate", "outer", "inner"], *inputs: Any, **kwargs: Any, ) -> Any: ... # NOTE: In reality `extobj` should be a length of list 3 containing an # int, an int, and a callable, but there's no way to properly express # non-homogenous lists. # Use `Any` over `Union` to avoid issues related to lists invariance. # NOTE: `reduce`, `accumulate`, `reduceat` and `outer` raise a ValueError for # ufuncs that don't accept two input arguments and return one output argument. # In such cases the respective methods are simply typed as `None`. # NOTE: Similarly, `at` won't be defined for ufuncs that return # multiple outputs; in such cases `at` is typed as `None` # NOTE: If 2 output types are returned then `out` must be a # 2-tuple of arrays. Otherwise `None` or a plain array are also acceptable class _UFunc_Nin1_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] @property def __name__(self) -> _NameType: ... @property def ntypes(self) -> _NTypes: ... @property def identity(self) -> _IDType: ... @property def nin(self) -> Literal[1]: ... @property def nout(self) -> Literal[1]: ... @property def nargs(self) -> Literal[2]: ... @property def signature(self) -> None: ... @property def reduce(self) -> None: ... @property def accumulate(self) -> None: ... @property def reduceat(self) -> None: ... @property def outer(self) -> None: ... @overload def __call__( self, __x1: _ScalarLike_co, out: None = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _2Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> Any: ... @overload def __call__( self, __x1: ArrayLike, out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _2Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> NDArray[Any]: ... @overload def __call__( self, __x1: _SupportsArrayUFunc, out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _2Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> Any: ... def at( self, a: _SupportsArrayUFunc, indices: _ArrayLikeInt_co, /, ) -> None: ... class _UFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] @property def __name__(self) -> _NameType: ... @property def ntypes(self) -> _NTypes: ... @property def identity(self) -> _IDType: ... @property def nin(self) -> Literal[2]: ... @property def nout(self) -> Literal[1]: ... @property def nargs(self) -> Literal[3]: ... @property def signature(self) -> None: ... @overload def __call__( self, __x1: _ScalarLike_co, __x2: _ScalarLike_co, out: None = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> Any: ... @overload def __call__( self, __x1: ArrayLike, __x2: ArrayLike, out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> NDArray[Any]: ... def at( self, a: NDArray[Any], indices: _ArrayLikeInt_co, b: ArrayLike, /, ) -> None: ... def reduce( self, array: ArrayLike, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: None | NDArray[Any] = ..., keepdims: bool = ..., initial: Any = ..., where: _ArrayLikeBool_co = ..., ) -> Any: ... def accumulate( self, array: ArrayLike, axis: SupportsIndex = ..., dtype: DTypeLike = ..., out: None | NDArray[Any] = ..., ) -> NDArray[Any]: ... def reduceat( self, array: ArrayLike, indices: _ArrayLikeInt_co, axis: SupportsIndex = ..., dtype: DTypeLike = ..., out: None | NDArray[Any] = ..., ) -> NDArray[Any]: ... # Expand `**kwargs` into explicit keyword-only arguments @overload def outer( self, A: _ScalarLike_co, B: _ScalarLike_co, /, *, out: None = ..., where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> Any: ... @overload def outer( # type: ignore[misc] self, A: ArrayLike, B: ArrayLike, /, *, out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> NDArray[Any]: ... class _UFunc_Nin1_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] @property def __name__(self) -> _NameType: ... @property def ntypes(self) -> _NTypes: ... @property def identity(self) -> _IDType: ... @property def nin(self) -> Literal[1]: ... @property def nout(self) -> Literal[2]: ... @property def nargs(self) -> Literal[3]: ... @property def signature(self) -> None: ... @property def at(self) -> None: ... @property def reduce(self) -> None: ... @property def accumulate(self) -> None: ... @property def reduceat(self) -> None: ... @property def outer(self) -> None: ... @overload def __call__( self, __x1: _ScalarLike_co, __out1: None = ..., __out2: None = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> _2Tuple[Any]: ... @overload def __call__( self, __x1: ArrayLike, __out1: None | NDArray[Any] = ..., __out2: None | NDArray[Any] = ..., *, out: _2Tuple[NDArray[Any]] = ..., where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> _2Tuple[NDArray[Any]]: ... @overload def __call__( self, __x1: _SupportsArrayUFunc, __out1: None | NDArray[Any] = ..., __out2: None | NDArray[Any] = ..., *, out: _2Tuple[NDArray[Any]] = ..., where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> _2Tuple[Any]: ... class _UFunc_Nin2_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] @property def __name__(self) -> _NameType: ... @property def ntypes(self) -> _NTypes: ... @property def identity(self) -> _IDType: ... @property def nin(self) -> Literal[2]: ... @property def nout(self) -> Literal[2]: ... @property def nargs(self) -> Literal[4]: ... @property def signature(self) -> None: ... @property def at(self) -> None: ... @property def reduce(self) -> None: ... @property def accumulate(self) -> None: ... @property def reduceat(self) -> None: ... @property def outer(self) -> None: ... @overload def __call__( self, __x1: _ScalarLike_co, __x2: _ScalarLike_co, __out1: None = ..., __out2: None = ..., *, where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _4Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> _2Tuple[Any]: ... @overload def __call__( self, __x1: ArrayLike, __x2: ArrayLike, __out1: None | NDArray[Any] = ..., __out2: None | NDArray[Any] = ..., *, out: _2Tuple[NDArray[Any]] = ..., where: None | _ArrayLikeBool_co = ..., casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _4Tuple[None | str] = ..., extobj: list[Any] = ..., ) -> _2Tuple[NDArray[Any]]: ... class _GUFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] @property def __name__(self) -> _NameType: ... @property def ntypes(self) -> _NTypes: ... @property def identity(self) -> _IDType: ... @property def nin(self) -> Literal[2]: ... @property def nout(self) -> Literal[1]: ... @property def nargs(self) -> Literal[3]: ... # NOTE: In practice the only gufunc in the main namespace is `matmul`, # so we can use its signature here @property def signature(self) -> Literal["(n?,k),(k,m?)->(n?,m?)"]: ... @property def reduce(self) -> None: ... @property def accumulate(self) -> None: ... @property def reduceat(self) -> None: ... @property def outer(self) -> None: ... @property def at(self) -> None: ... # Scalar for 1D array-likes; ndarray otherwise @overload def __call__( self, __x1: ArrayLike, __x2: ArrayLike, out: None = ..., *, casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., axes: list[_2Tuple[SupportsIndex]] = ..., ) -> Any: ... @overload def __call__( self, __x1: ArrayLike, __x2: ArrayLike, out: NDArray[Any] | tuple[NDArray[Any]], *, casting: _CastingKind = ..., order: _OrderKACF = ..., dtype: DTypeLike = ..., subok: bool = ..., signature: str | _3Tuple[None | str] = ..., extobj: list[Any] = ..., axes: list[_2Tuple[SupportsIndex]] = ..., ) -> NDArray[Any]: ...